Predict: a Radiomics Extensive Digital Interchangable Classification Toolkit.
Project description
This is an open-source python package supporting Radiomics medical image feature extraction and classification.
We aim to add a wide variety of features and classifiers to address a wide variety classification problems. Through a modular setup, these can easily be interchanged and compared.
Documentation
For more information, see the sphinx generated documentation available here (WIP).
Alternatively, you can generate the documentation by checking out the master branch and running from the root directory:
python setup.py build_sphinx
The documentation can then be viewed in a browser by opening PACKAGE_ROOT\build\sphinx\html\index.html.
Installation
PREDICT has currently only been tested on Unix with Python 2.7.6 and higher. We plan to merge towards Python 3 before may 2019.
The package can be installed through pip :
pip install PREDICT
Alternatively, you can use the provided setup.py file:
python setup.py install
Make sure you first install the required packages:
pip install -r requirements.txt
Preprocessing
From version 1.0.2 and on, preprocessing has been removed from PREDICT. It is now available as a separate tool in the WORC package, as it’s also a separate step in the radiomics workflow. We do advice to use the preprocessing function and thus also WORC.
3rd-party packages used in PREDICT:
We mainly rely on the following packages:
SimpleITK (Image loading and preprocessing)
numpy (Feature computation)
sklearn, scipy (Classification)
FASTR (Fast and parallel workflow execution)
pandas (Storage)
PyRadiomics
See also the requirements file.
License
This package is covered by the open source APACHE 2.0 License.
Contact
We are happy to help you with any questions: please send us a message or create an issue on Github.
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